Petyuk Vladislav A, Jaitly Navdeep, Moore Ronald J, Ding Jie, Metz Thomas O, Tang Keqi, Monroe Matthew E, Tolmachev Aleksey V, Adkins Joshua N, Belov Mikhail E, Dabney Alan R, Qian Wei-Jun, Camp David G, Smith Richard D
Biological Sciences Division and Environmental Molecular Sciences Laboratory, Pacific Northwest National Laboratory, Richland, Washington 99352, USA.
Anal Chem. 2008 Feb 1;80(3):693-706. doi: 10.1021/ac701863d. Epub 2007 Dec 29.
The high mass measurement accuracy and precision available with recently developed mass spectrometers is increasingly used in proteomics analyses to confidently identify tryptic peptides from complex mixtures of proteins, as well as post-translational modifications and peptides from nonannotated proteins. To take full advantage of high mass measurement accuracy instruments, it is necessary to limit systematic mass measurement errors. It is well known that errors in m/z measurements can be affected by experimental parameters that include, for example, outdated calibration coefficients, ion intensity, and temperature changes during the measurement. Traditionally, these variations have been corrected through the use of internal calibrants (well-characterized standards introduced with the sample being analyzed). In this paper, we describe an alternative approach where the calibration is provided through the use of a priori knowledge of the sample being analyzed. Such an approach has previously been demonstrated based on the dependence of systematic error on m/z alone. To incorporate additional explanatory variables, we employed multidimensional, nonparametric regression models, which were evaluated using several commercially available instruments. The applied approach is shown to remove any noticeable biases from the overall mass measurement errors and decreases the overall standard deviation of the mass measurement error distribution by 1.2-2-fold, depending on instrument type. Subsequent reduction of the random errors based on multiple measurements over consecutive spectra further improves accuracy and results in an overall decrease of the standard deviation by 1.8-3.7-fold. This new procedure will decrease the false discovery rates for peptide identifications using high-accuracy mass measurements.
最近开发的质谱仪所具备的高质量测量精度和准确性,在蛋白质组学分析中越来越多地被用于从复杂的蛋白质混合物中可靠地鉴定胰蛋白酶肽段,以及鉴定翻译后修饰和来自未注释蛋白质的肽段。为了充分利用高质量测量精度的仪器,有必要限制系统质量测量误差。众所周知,m/z测量中的误差可能会受到实验参数的影响,例如过时的校准系数、离子强度和测量过程中的温度变化。传统上,这些变化是通过使用内部校准物(与被分析样品一起引入的特征明确的标准品)来校正的。在本文中,我们描述了一种替代方法,即通过使用被分析样品的先验知识来进行校准。此前已经基于系统误差仅对m/z的依赖性证明了这种方法。为了纳入额外的解释变量,我们采用了多维非参数回归模型,并使用了几种商用仪器对其进行评估。所应用的方法被证明可以消除整体质量测量误差中的任何明显偏差,并根据仪器类型将质量测量误差分布的总体标准差降低1.2至2倍。随后基于对连续光谱的多次测量来减少随机误差,进一步提高了准确性,并使标准差总体降低了1.8至3.7倍。这种新方法将降低使用高精度质量测量进行肽段鉴定时的错误发现率。